CPS: Medium: Collaborative Research: Scalable Intelligent Backscatter-Based RF Sensor Network for Self-Diagnosis of Structures
Petar Djuric
Lead PI:
Petar Djuric
Co-PI:
Abstract

This Cyber-Physical Systems (CPS) grant will advance structural health monitoring of concrete structures by relying on data acquired by a novel sensing technology with unprecedented scalability and spatial resolution. Modern society depends critically on sound and steadfast functioning of a variety of engineering structures and infrastructures, such as bridges, buildings, pipelines, geotechnical structures, aircrafts, wind turbines, and industrial facilities. Due to aging, massive urbanization, and climate change, there is a growing need for accurate and reliable assessment of the health condition, performance, and operation of these structures in order to ensure their continuous functioning and safe use. The researched technology enables pervasive and scalable sensing of concrete structures with high resolution by transforming concrete into a smart self-sensing material, thereby enabling reliable long-term structural health monitoring. This in turn contributes to the nation?s sustainability and resilience and to advancing the nation?s prosperity, welfare, and security. The project advances multiple core research areas in structural health monitoring including CPS system architectures using embedded devices, multi-parameter sensing and networking based on radio frequency sensors, and machine learning for accurate and reliable data analytics. The research outcomes are highly translational to various other CPS domains. The project also contributes to secondary education and outreach activities in multiple ways as well as to undergraduate and graduate education.

The aim of this project is to create a novel sensing system comprised of radio frequency sensors that are pervasively embedded in large volumes of concrete structures and that sense their localities using radio frequency properties. The objective is the assessment of key parameters that reflect the behavior of the monitored structure under operational conditions, such as deformation, temperature, and humidity, as well as detection and characterization of damages. The project has the following intellectual contributions: 1) Passive radio frequency-based sensing that operates over a wide range of frequencies; architectures of smart exciters and networked radio frequency sensors that communicate among themselves via backscatter modulation; solar-powered radio frequency exciter platform that powers the sensors. 2) Energy-based sensing and network optimization of the radio frequency sensor network in terms of its monitoring ability and network connectivity given the constraints on the available harvested power at the exciters. 3) Machine learning methods for function estimation based on the principle of ensemble modeling with Gaussian processes and applied to self-localization and to inference of three-dimensional distributions of material parameters within large volumes of concrete structures.

Petar Djuric
Petar M. Djurić obtained his B.S. and M.S. degrees in Electrical Engineering from the University of Belgrade and his Ph.D. degree in Electrical Engineering from the University of Rhode Island. Following the completion of his Ph.D., he joined Stony Brook University, where he currently holds the position of SUNY Distinguished Professor and serves as the Savitri Devi Bangaru Professor in Artificial Intelligence. Djurić also held the role of Chair of the Department of Electrical and Computer Engineering from 2016 to 2023. His research has predominantly focused on machine learning and signal and information processing. In 2012, Djurić received the EURASIP Technical Achievement Award whereas in 2008, he was appointed Chair of Excellence of Universidad Carlos III de Madrid-Banco de Santander. He has actively participated in various committees of the IEEE Signal Processing Society and served on committees for numerous professional conferences and workshops. He was the founding Editor-in-Chief of the IEEE Transactions on Signal and Information Processing Over Networks. In 2022, he was elected as a foreign member of the Serbian Academy of Engineering Sciences. Furthermore, Djurić holds the distinction of being a Fellow of IEEE, EURASIP, AAIA (Asia-Pacific Artificial Intelligence Association), and AIIA (the Industry Academy of the International Artificial Intelligence Industry Alliance).
Performance Period: 10/01/2021 - 10/31/2025
Institution: SUNY at Stony Brook
Sponsor: National Science Foundation
Award Number: 2038801